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Dynamic Multimodal Prototype Learning in Vision-Language Models

About

With the increasing attention to pre-trained vision-language models (VLMs), \eg, CLIP, substantial efforts have been devoted to many downstream tasks, especially in test-time adaptation (TTA). However, previous works focus on learning prototypes only in the textual modality while overlooking the ambiguous semantics in class names. These ambiguities lead to textual prototypes that are insufficient to capture visual concepts, resulting in limited performance. To address this issue, we introduce \textbf{ProtoMM}, a training-free framework that constructs multimodal prototypes to adapt VLMs during the test time. By viewing the prototype as a discrete distribution over the textual descriptions and visual particles, ProtoMM has the ability to combine the multimodal features for comprehensive prototype learning. More importantly, the visual particles are dynamically updated as the testing stream flows. This allows our multimodal prototypes to continually learn from the data, enhancing their generalizability in unseen scenarios. In addition, we quantify the importance of the prototypes and test images by formulating their semantic distance as an optimal transport problem. Extensive experiments on 15 zero-shot benchmarks demonstrate the effectiveness of our method, achieving a 1.03\% average accuracy improvement over state-of-the-art methods on ImageNet and its variant datasets.

Xingyu Zhu, Shuo Wang, Beier Zhu, Miaoge Li, Yunfan Li, Junfeng Fang, Zhicai Wang, Dongsheng Wang, Hanwang Zhang• 2025

Related benchmarks

TaskDatasetResultRank
Image ClassificationStanford Cars
Accuracy69.92
635
Image ClassificationCUB-200 2011
Accuracy60.04
356
Image ClassificationOxford Flowers 102
Accuracy77.4
234
Image ClassificationOxford-IIIT Pet
Accuracy91.29
219
Image ClassificationStanford Dogs
Accuracy68.63
153
Image ClassificationFGVC Aircraft--
92
Scene recognitionSUN397
Accuracy70.67
49
RecognitionImageNet-1K
Top-1 Accuracy72.76
42
Image RecognitionDescribable Textures Dataset (DTD)
Accuracy56.38
32
Visual RecognitionFood-101
Top-1 Acc85.89
16
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